DSA Image Analysis of Clinical Features and Nursing Care of Cerebral Aneurysm Patients Based on the Deep Learning Algorithm
Objective. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated. Methods. Using a retrospective multicenter study method based on radiology repo...
Saved in:
| Published in | Scanning Vol. 2022; pp. 1 - 6 |
|---|---|
| Main Authors | , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
England
Hindawi
2022
John Wiley & Sons, Inc |
| Subjects | |
| Online Access | Get full text |
| ISSN | 0161-0457 1932-8745 1932-8745 |
| DOI | 10.1155/2022/8485651 |
Cover
| Abstract | Objective. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated. Methods. Using a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians’ annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area. Results. Fivefold cross-validation was used for the training set and the internal test set, and a sensitivity of 94.4±1.1% was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females). Conclusion. The deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets. |
|---|---|
| AbstractList | Objective. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated. Methods. Using a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians’ annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area. Results. Fivefold cross-validation was used for the training set and the internal test set, and a sensitivity of 94.4±1.1% was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females). Conclusion. The deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated. Using a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians' annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area. Fivefold cross-validation was used for the training set and the internal test set, and a sensitivity of (94.4 ± 1.1)% was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females). The deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated.ObjectiveA deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated.Using a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians' annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area.MethodsUsing a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians' annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area.Fivefold cross-validation was used for the training set and the internal test set, and a sensitivity of (94.4 ± 1.1)% was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females).ResultsFivefold cross-validation was used for the training set and the internal test set, and a sensitivity of (94.4 ± 1.1)% was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females).The deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets.ConclusionThe deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets. Objective. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were analyzed, and targeted nursing measures were formulated. Methods. Using a retrospective multicenter study method based on radiology reports, DSA images of aneurysms were randomly divided into 75 cases in the training set, 20 cases in the internal test set, and 35 cases in the external test set. Using a computer-aided detection method based on the three-dimensional U-Net (3D U-Net), after preprocessing DSA images, automatic segmentation of intracranial blood vessels is performed to obtain regions of interest, and based on the segmentation results, physicians’ annotations are introduced. The 3D U-Net network model is trained and adjusted, and the obtained model is used to automatically detect the cerebral aneurysm area. Results. Fivefold cross-validation was used for the training set and the internal test set, and a sensitivity of 94.4 ± 1.1 % was obtained. Automatic detection of aneurysms was performed on the external test set, and the average false positive rate was 0.86 FPs/case (false positives/case). The resulting sensitivity was 82.9%. The classification comparison of external test sets showed that the sensitivity of the method for detecting aneurysms with sizes of 5.00~<10.00 mm and ≥10.00 mm (88.2% and 100.0%) was higher than that for aneurysms with sizes of <3.00 mm and 3.00~<5.00 mm (50.0% and 72.7%). The sensitivity of patients aged 50-60 years and >60 years (90.0% and 87.5%) was higher than that of patients aged <50 years (66.7%), and there was little difference between different genders (84.6% in males and 81.8% in females). Conclusion. The deep learning algorithm has high diagnostic performance in detecting intracranial aneurysms, which is verified by external datasets. |
| Author | Zhang, Nafei Wang, Jian Sun, Kejuan Ti, Lin Yang, Ruping Sun, Xiaorui |
| AuthorAffiliation | The First Hospital of Hebei Medical University, Shijiazhuang, Hebei 050031, China |
| AuthorAffiliation_xml | – name: The First Hospital of Hebei Medical University, Shijiazhuang, Hebei 050031, China |
| Author_xml | – sequence: 1 givenname: Jian orcidid: 0000-0001-8236-3822 surname: Wang fullname: Wang, Jian organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn – sequence: 2 givenname: Lin orcidid: 0000-0002-7732-7242 surname: Ti fullname: Ti, Lin organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn – sequence: 3 givenname: Xiaorui orcidid: 0000-0002-2919-7180 surname: Sun fullname: Sun, Xiaorui organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn – sequence: 4 givenname: Ruping orcidid: 0000-0002-3795-4866 surname: Yang fullname: Yang, Ruping organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn – sequence: 5 givenname: Nafei orcidid: 0000-0002-0416-0680 surname: Zhang fullname: Zhang, Nafei organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn – sequence: 6 givenname: Kejuan orcidid: 0000-0003-4751-5135 surname: Sun fullname: Sun, Kejuan organization: The First Hospital of Hebei Medical UniversityShijiazhuangHebei 050031Chinahebmu.edu.cn |
| BackLink | https://www.ncbi.nlm.nih.gov/pubmed/36034470$$D View this record in MEDLINE/PubMed |
| BookMark | eNqFkUFv1DAQhS1URLeFG2dkiQsShNqOHTsXpLClUGkFSPRuOclk15Vjb-2EasWfJ-kuFVQCTj7M98bz3jtBRz54QOg5JW8pFeKMEcbOFFeiEPQRWtAyZ5mSXByhBaEFzQgX8hidpHRNCGGlok_QcV6QnHNJFujH-bcKX_ZmDbjyxu2STTh0eOmst41x-ALMMEZI2PgWfx5jsn6NlybCHQUR6jhRlYcx7lKPv5rBgh8Sfm8StDh4PGwAnwNs8QpM9LO6cusQ7bDpn6LHnXEJnh3eU3R18eFq-Slbffl4uaxWWcO5GjLZGdXKTnZtCx0QKKGjhALInBHgTIiyMbnkvK15wWvWkU6WStbSCGkKDvkpyvZrR781u1vjnN5G25u405ToOUM9Z6gPGU78uz2_Hese2mbyM3m81wRj9Z8Tbzd6Hb7rMi9ZwdS04NVhQQw3I6RB9zY14JzxEMakmSRSSSHI_NfLB-h1GONUxB3FpVBUlRP14veL7k_5VeMEsD3QxJBShE43dpiqCPOB1v3N55sHov_E8nqPb6xvza39N_0T5HbKQA |
| CitedBy_id | crossref_primary_10_1155_2023_9816025 crossref_primary_10_3233_THC_230254 crossref_primary_10_2339_politeknik_1261854 crossref_primary_10_62347_HMMQ1938 |
| Cites_doi | 10.1002/brb3.662 10.1007/s00701-012-1417-y 10.1007/978-3-319-75238-9_25 10.1002/jmri.25842 10.1227/neu.0000000000001042 10.1148/radiol.2018180901 10.1016/j.diii.2015.06.003 10.3174/ajnr.a1932 10.1161/strokeaha.108.191395 10.1161/01.str.31.5.1054 10.1016/s1474-4422(11)70109-0 10.1093/neuros/nyw049 10.1007/s11548-019-01942-0 10.1159/000346087 10.1016/j.neucom.2014.07.006 10.1007/s003300050961 |
| ContentType | Journal Article |
| Copyright | Copyright © 2022 Jian Wang et al. Copyright © 2022 Jian Wang et al. This is an open access article distributed under the Creative Commons Attribution License (the “License”), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. https://creativecommons.org/licenses/by/4.0 Copyright © 2022 Jian Wang et al. 2022 |
| Copyright_xml | – notice: Copyright © 2022 Jian Wang et al. – notice: Copyright © 2022 Jian Wang et al. This is an open access article distributed under the Creative Commons Attribution License (the “License”), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. https://creativecommons.org/licenses/by/4.0 – notice: Copyright © 2022 Jian Wang et al. 2022 |
| DBID | RHU RHW RHX AAYXX CITATION CGR CUY CVF ECM EIF NPM 3V. 7U5 7X7 7XB 88E 8FD 8FE 8FG 8FI 8FJ 8FK ABJCF ABUWG AFKRA ARAPS AZQEC BENPR BGLVJ CCPQU DWQXO FYUFA GHDGH GNUQQ HCIFZ JQ2 K7- K9. L6V L7M M0S M1P M7S P5Z P62 PHGZM PHGZT PJZUB PKEHL PPXIY PQEST PQGLB PQQKQ PQUKI PTHSS 7X8 5PM ADTOC UNPAY |
| DOI | 10.1155/2022/8485651 |
| DatabaseName | Hindawi Publishing Complete Hindawi Publishing Subscription Journals Hindawi Publishing Open Access CrossRef Medline MEDLINE MEDLINE (Ovid) MEDLINE MEDLINE PubMed ProQuest Central (Corporate) Solid State and Superconductivity Abstracts ProQuest Central Health & Medical Collection (via ProQuest) ProQuest Central (purchase pre-March 2016) Medical Database (Alumni Edition) Technology Research Database ProQuest SciTech Collection ProQuest Technology Collection ProQuest Hospital Collection Hospital Premium Collection (Alumni Edition) ProQuest Central (Alumni) (purchase pre-March 2016) Materials Science & Engineering Collection ProQuest Central (Alumni) ProQuest Central UK/Ireland Advanced Technologies & Computer Science Collection ProQuest Central Essentials ProQuest Central Technology collection ProQuest One Community College ProQuest Central Health Research Premium Collection Health Research Premium Collection (Alumni) ProQuest Central Student SciTech Premium Collection ProQuest Computer Science Collection Computer Science Database ProQuest Health & Medical Complete (Alumni) ProQuest Engineering Collection Advanced Technologies Database with Aerospace Health & Medical Collection (Alumni Edition) ProQuest Medical Database Engineering Database ProQuest Central Advanced Technologies & Aerospace Database (via ProQuest) ProQuest Advanced Technologies & Aerospace Collection ProQuest Central Premium ProQuest One Academic ProQuest Health & Medical Research Collection ProQuest One Academic Middle East (New) ProQuest One Health & Nursing ProQuest One Academic Eastern Edition (DO NOT USE) ProQuest One Applied & Life Sciences ProQuest One Academic ProQuest One Academic UKI Edition Engineering Collection MEDLINE - Academic PubMed Central (Full Participant titles) Unpaywall for CDI: Periodical Content Unpaywall |
| DatabaseTitle | CrossRef MEDLINE Medline Complete MEDLINE with Full Text PubMed MEDLINE (Ovid) Computer Science Database ProQuest Central Student Technology Collection Technology Research Database ProQuest One Academic Middle East (New) ProQuest Advanced Technologies & Aerospace Collection ProQuest Central Essentials ProQuest Computer Science Collection ProQuest Health & Medical Complete (Alumni) ProQuest Central (Alumni Edition) SciTech Premium Collection ProQuest One Community College ProQuest One Health & Nursing ProQuest Central ProQuest One Applied & Life Sciences ProQuest Health & Medical Research Collection ProQuest Engineering Collection Health Research Premium Collection Health and Medicine Complete (Alumni Edition) ProQuest Central Korea Health & Medical Research Collection ProQuest Central (New) Advanced Technologies Database with Aerospace ProQuest Medical Library (Alumni) Engineering Collection Advanced Technologies & Aerospace Collection Engineering Database ProQuest One Academic Eastern Edition ProQuest Hospital Collection ProQuest Technology Collection Health Research Premium Collection (Alumni) ProQuest SciTech Collection ProQuest Hospital Collection (Alumni) Advanced Technologies & Aerospace Database ProQuest Health & Medical Complete ProQuest Medical Library ProQuest One Academic UKI Edition Materials Science & Engineering Collection Solid State and Superconductivity Abstracts ProQuest One Academic ProQuest One Academic (New) ProQuest Central (Alumni) MEDLINE - Academic |
| DatabaseTitleList | Computer Science Database MEDLINE MEDLINE - Academic CrossRef |
| Database_xml | – sequence: 1 dbid: RHX name: Hindawi Publishing Open Access url: http://www.hindawi.com/journals/ sourceTypes: Publisher – sequence: 2 dbid: NPM name: PubMed url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed sourceTypes: Index Database – sequence: 3 dbid: EIF name: MEDLINE url: https://proxy.k.utb.cz/login?url=https://www.webofscience.com/wos/medline/basic-search sourceTypes: Index Database – sequence: 4 dbid: UNPAY name: Unpaywall url: https://proxy.k.utb.cz/login?url=https://unpaywall.org/ sourceTypes: Open Access Repository – sequence: 5 dbid: 8FG name: ProQuest Technology Collection url: https://search.proquest.com/technologycollection1 sourceTypes: Aggregation Database |
| DeliveryMethod | fulltext_linktorsrc |
| Discipline | Biology |
| EISSN | 1932-8745 |
| Editor | Nagaraj, Balakrishnan |
| Editor_xml | – sequence: 1 givenname: Balakrishnan surname: Nagaraj fullname: Nagaraj, Balakrishnan |
| EndPage | 6 |
| ExternalDocumentID | 10.1155/2022/8485651 PMC9392628 36034470 10_1155_2022_8485651 |
| Genre | Multicenter Study Retracted Publication Journal Article |
| GroupedDBID | --- .3N .GA 05W 0R~ 10A 123 1L6 24P 3SF 3WU 4.4 4ZD 50Y 50Z 51W 51X 52M 52N 52O 52P 52S 52T 52U 52W 52X 5RE 5VS 66C 702 7PT 7X7 8-0 8-1 8-3 8-4 8-5 88E 8FE 8FG 8FI 8FJ 8UM 930 A03 AAESR AAFWJ AAJEY AAONW ABCQN ABEML ABJCF ABPVW ABUWG ACCMX ACGFS ACIWK ACSCC ADBBV ADIZJ AENEX AFBPY AFKRA AJXKR ALAGY ALIPV ALMA_UNASSIGNED_HOLDINGS AMBMR AOIJS ARAPS ATUGU AZBYB AZVAB BAFTC BCNDV BENPR BGLVJ BHBCM BNHUX BPHCQ BROTX BRXPI BVXVI BY8 CCPQU CS3 D-E D-F DPXWK DR2 DU5 EBS F00 F01 F04 F5P FYUFA G-S G.N GODZA H.T H.X H13 HCIFZ HMCUK HYE HZ~ INR IX1 J0M JPC K6V K7- L6V LAW LC2 LC3 LP6 LP7 M1P M7S MK4 N04 N05 N9A NF~ O9- OIG OK1 P2X P4D P62 PGMZT PHGZT PQQKQ PROAC PSQYO PTHSS Q.N Q11 QB0 QRW R.K RHU RHW RHX RNS RPM RX1 SJN SUPJJ UB1 UKHRP W8V W99 WBKPD WJL WQJ XG1 XV2 ~02 ~IA ~WT AAMMB AAYXX AEFGJ AGXDD AIDQK AIDYY CITATION PHGZM PJZUB PPXIY PQGLB PUEGO .Y3 31~ 53G AAEVG AANHP AAZKR ABDPE ABEFU ACBWZ ACRPL ACXQS ACYXJ ADNMO AEIMD AEUCX AFZJQ AGQPQ ASPBG AVWKF AZFZN BDRZF CGR CUY CVF ECM EIF EJD FEDTE HF~ HVGLF LH4 LW6 NPM RIWAO RJQFR ROL WYUIH ZCN ZGI ZY4 3V. 7U5 7XB 8FD 8FK AZQEC DWQXO GNUQQ JQ2 K9. L7M PKEHL PQEST PQUKI 7X8 5PM ADTOC UNPAY |
| ID | FETCH-LOGICAL-c448t-7fa8d7f7fddefe0e9ef101ee7320e42559ca3744db464b2f0f7987b7a57a64e3 |
| IEDL.DBID | BENPR |
| ISSN | 0161-0457 1932-8745 |
| IngestDate | Sun Oct 26 03:51:26 EDT 2025 Tue Sep 30 17:00:42 EDT 2025 Thu Oct 02 03:43:21 EDT 2025 Tue Oct 07 06:08:18 EDT 2025 Mon Jul 21 06:04:47 EDT 2025 Wed Oct 01 04:47:00 EDT 2025 Thu Apr 24 23:00:02 EDT 2025 Wed Apr 16 06:26:42 EDT 2025 |
| IsDoiOpenAccess | true |
| IsOpenAccess | true |
| IsPeerReviewed | true |
| IsScholarly | true |
| Language | English |
| License | This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. https://creativecommons.org/licenses/by/4.0 Copyright © 2022 Jian Wang et al. cc-by |
| LinkModel | DirectLink |
| MergedId | FETCHMERGED-LOGICAL-c448t-7fa8d7f7fddefe0e9ef101ee7320e42559ca3744db464b2f0f7987b7a57a64e3 |
| Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 ObjectType-Correction/Retraction-3 Academic Editor: Balakrishnan Nagaraj |
| ORCID | 0000-0002-2919-7180 0000-0001-8236-3822 0000-0002-3795-4866 0000-0002-0416-0680 0000-0002-7732-7242 0000-0003-4751-5135 |
| OpenAccessLink | https://dx.doi.org/10.1155/2022/8485651 |
| PMID | 36034470 |
| PQID | 2704758189 |
| PQPubID | 1046364 |
| PageCount | 6 |
| ParticipantIDs | unpaywall_primary_10_1155_2022_8485651 pubmedcentral_primary_oai_pubmedcentral_nih_gov_9392628 proquest_miscellaneous_2707875501 proquest_journals_2704758189 pubmed_primary_36034470 crossref_citationtrail_10_1155_2022_8485651 crossref_primary_10_1155_2022_8485651 hindawi_primary_10_1155_2022_8485651 |
| ProviderPackageCode | CITATION AAYXX |
| PublicationCentury | 2000 |
| PublicationDate | 2022-00-00 |
| PublicationDateYYYYMMDD | 2022-01-01 |
| PublicationDate_xml | – year: 2022 text: 2022-00-00 |
| PublicationDecade | 2020 |
| PublicationPlace | England |
| PublicationPlace_xml | – name: England – name: Mahwah |
| PublicationTitle | Scanning |
| PublicationTitleAlternate | Scanning |
| PublicationYear | 2022 |
| Publisher | Hindawi John Wiley & Sons, Inc |
| Publisher_xml | – name: Hindawi – name: John Wiley & Sons, Inc |
| References | 11 12 13 14 15 16 1 2 3 4 5 6 7 8 9 10 38093772 - Scanning. 2023 Dec 6;2023:9816025 |
| References_xml | – ident: 2 doi: 10.1002/brb3.662 – ident: 9 doi: 10.1007/s00701-012-1417-y – ident: 11 doi: 10.1007/978-3-319-75238-9_25 – ident: 15 doi: 10.1002/jmri.25842 – ident: 8 doi: 10.1227/neu.0000000000001042 – ident: 14 doi: 10.1148/radiol.2018180901 – ident: 6 doi: 10.1016/j.diii.2015.06.003 – ident: 13 doi: 10.3174/ajnr.a1932 – ident: 7 doi: 10.1161/strokeaha.108.191395 – ident: 5 doi: 10.1161/01.str.31.5.1054 – ident: 1 doi: 10.1016/s1474-4422(11)70109-0 – ident: 3 doi: 10.1093/neuros/nyw049 – ident: 16 doi: 10.1007/s11548-019-01942-0 – ident: 4 doi: 10.1159/000346087 – ident: 10 doi: 10.1016/j.neucom.2014.07.006 – ident: 12 doi: 10.1007/s003300050961 – reference: 38093772 - Scanning. 2023 Dec 6;2023:9816025 |
| SSID | ssj0002981 |
| Score | 2.2747645 |
| SecondaryResourceType | retracted_publication |
| Snippet | Objective. A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics... A deep learning algorithm was developed for automatic detection and localization of intracranial aneurysms in DSA, and its clinical characteristics were... |
| SourceID | unpaywall pubmedcentral proquest pubmed crossref hindawi |
| SourceType | Open Access Repository Aggregation Database Index Database Enrichment Source Publisher |
| StartPage | 1 |
| SubjectTerms | Age Algorithms Aneurysms Annotations Artificial intelligence Blood vessels Cerebral Angiography Computer aided testing Deep Learning Distance learning Female Hemodynamics Humans Image analysis Image Processing, Computer-Assisted Image segmentation Intracranial Aneurysm Machine learning Male Medical imaging Medical screening Methods Mortality Normal distribution Patients Physicians Sensitivity Test sets Three dimensional models Training Veins & arteries Workloads |
| SummonAdditionalLinks | – databaseName: Hindawi Publishing Open Access dbid: RHX link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1Lb9QwELagUgUX1FKgoS0apMIFReTh-HHctlQLB4RKkfYW2YndXSmbrPahatU_33HijVjK6xh54iQez3g-e_INIaeRMjTjFr1fkomQxoqFgpZxyBmVmmF8Xeg2y_crG_6gX0bZyJMkLR4e4eNq5-B58lFQgaEHwpzHgrnMravhqHe4iRRd2UGGyBifvMlv_-XerZVnd-wg7-3kd4Hlw_zIJ6t6pta3qqp-Wnwu98gzHzXCoFPzPnlk6udkt6sjuT4gdxffB_B5iq4BNiQj0FjwnJ8VuDhvhbgaVF2C3x8A9-dRK2Xm7vAYe3fcluvFFL51XKsLOMMlroSmBowS4cKYGXg61hsYVDfNfLIcT1-Q68tP1-fD0FdVCAuEYsuQWyVK1I5Fx2ZNZKSxaJbG8DSJDHUIo1App7TUlFGd2MhyKbjmKuOKUZO-JDt1U5tDAugdhBFFiQOfUs2llkVstJZxEauEWx2QD5sBzwvPOO4KX1R5izyyLHfqyb16AvKul551TBt_kDv1uvuH2PFGsbk3y0We8IgiQIqFDMjbvhkNyp2SqNo0q1YGnRgCN-ziVTcP-gelrGVIjALCt2ZIL-DIurdb6sm4Je2WqWNmFAF538-lv77_6__7zCPy1F12m0LHZGc5X5kTDJOW-k1rJPfNqwhg priority: 102 providerName: Hindawi Publishing – databaseName: Unpaywall dbid: UNPAY link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwpV1Lb9QwEB7BVhW98C4NFGSkwgVlm4cTO8eFUhUOVSVaqZwiO7G7K7LJapOoWvjzjBNn1eUtcYw8smN7PP4-Pz4DHHhC0YhpjH5BxF3qi9jlNPddFtNExoivM9md8j2NTy7ox8vo8sYt_txIxFcir8dTw0mvZ120tu1aH9ZZ_5KP4ezBIacc8QjGmlzfhq04QjQ-gq2L07PJ517SG5ky7cQ-DUxxjbL7cPY9ijay2JiVtm3RvwKdP5-dvNOWC7G6FkVxY2I6vgdiqFJ_HuXLuG3kOPv6g9rj_9T5Pty1qJVMejd7ALdU-RC2-3csV4_g29GnCfkwx9BEBpETUmliNUcLYnBmi7yeiDIndn2CmJtPnZVams1rzN1oa67qOTnrtV5r8han2JxUJUGUSo6UWhArB3tFJsVVtZw10_ljOD9-f_7uxLWvOrgZUsHGZVrwHL1DY2DVylOJ0hgWlGJh4ClqGE4mQkZpLmlMZaA9zRLOJBMREzFV4S6MyqpUe0AwOnHFsxw7OqSSJTLJfCVl4me-CJiWDrwZOjXNrOK5eXijSDvmE0WpadHUtqgDr9bWi17p4zd2B7ab_mK2PzhPOnRlGjCPIkHzeeLAy3UyDmizSyNKVbWdDQZRJI6YxZPe19YFhXGn0Og5wDa8cG1gxMI3U8rZtBMNT0KjDMkdeL321z_-_9N_NXwGO-azX5bah1GzbNVzBGqNfGHH4netdTii priority: 102 providerName: Unpaywall |
| Title | DSA Image Analysis of Clinical Features and Nursing Care of Cerebral Aneurysm Patients Based on the Deep Learning Algorithm |
| URI | https://dx.doi.org/10.1155/2022/8485651 https://www.ncbi.nlm.nih.gov/pubmed/36034470 https://www.proquest.com/docview/2704758189 https://www.proquest.com/docview/2707875501 https://pubmed.ncbi.nlm.nih.gov/PMC9392628 https://downloads.hindawi.com/journals/scanning/2022/8485651.pdf |
| UnpaywallVersion | publishedVersion |
| Volume | 2022 |
| hasFullText | 1 |
| inHoldings | 1 |
| isFullTextHit | |
| isPrint | |
| journalDatabaseRights | – providerCode: PRVAQN databaseName: PubMed Central customDbUrl: eissn: 1932-8745 dateEnd: 20231231 omitProxy: true ssIdentifier: ssj0002981 issn: 0161-0457 databaseCode: RPM dateStart: 20170101 isFulltext: true titleUrlDefault: https://www.ncbi.nlm.nih.gov/pmc/ providerName: National Library of Medicine – providerCode: PRVPQU databaseName: ProQuest Central customDbUrl: http://www.proquest.com/pqcentral?accountid=15518 eissn: 1932-8745 dateEnd: 20230131 omitProxy: true ssIdentifier: ssj0002981 issn: 0161-0457 databaseCode: BENPR dateStart: 20110101 isFulltext: true titleUrlDefault: https://www.proquest.com/central providerName: ProQuest – providerCode: PRVPQU databaseName: ProQuest Central Health & Medical Collection (via ProQuest) customDbUrl: eissn: 1932-8745 dateEnd: 20230131 omitProxy: true ssIdentifier: ssj0002981 issn: 0161-0457 databaseCode: 7X7 dateStart: 20110101 isFulltext: true titleUrlDefault: https://search.proquest.com/healthcomplete providerName: ProQuest – providerCode: PRVPQU databaseName: ProQuest Technology Collection customDbUrl: eissn: 1932-8745 dateEnd: 99991231 omitProxy: true ssIdentifier: ssj0002981 issn: 0161-0457 databaseCode: 8FG dateStart: 20110101 isFulltext: true titleUrlDefault: https://search.proquest.com/technologycollection1 providerName: ProQuest – providerCode: PRVWIB databaseName: Wiley Online Library - Core collection (SURFmarket) issn: 0161-0457 databaseCode: DR2 dateStart: 19940101 customDbUrl: isFulltext: true eissn: 1932-8745 dateEnd: 99991231 omitProxy: false ssIdentifier: ssj0002981 providerName: Wiley-Blackwell – providerCode: PRVWIB databaseName: Wiley Online Library Open Access customDbUrl: eissn: 1932-8745 dateEnd: 99991231 omitProxy: true ssIdentifier: ssj0002981 issn: 0161-0457 databaseCode: 24P dateStart: 20170101 isFulltext: true titleUrlDefault: https://authorservices.wiley.com/open-science/open-access/browse-journals.html providerName: Wiley-Blackwell |
| link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwhV3da9swED_alLK9jO6rc9cWDbq9DFN_yJb8MEbaNMv2EELWQvZkJFtuCo6dNgkl7J_fyZbdhW3di8HWIQvd6XR3Ov0O4MQRigYsQ-3nBdymrghtTlPXZiGNZIj2dSKrLN9hOLii3ybBZAuGzV0YnVbZ6MRKUadlomPkpx5zKNq2Lo8-z29tXTVKn642JTSEKa2QfqogxrZhx9PIWB3YObsYjsatbvYiXlcoDNGJxkE2qfBBoKMA3imnHC0cd2OT2p1q7_j-5m826J-plE9WxVys70We_7ZP9ffgmTEwSbeWiOewpYoXsFuXnFy_hJ-9713ydYZahDR4JKTMiIEHzYk2CVfoghNRpMSEEoi-pFRRqTt9zoy9axjM9WJGRjUs64Kc4W6YkrIgaFCSnlJzYpBbr0k3v8aJXE5nr-Cyf3F5PrBNAQY7Qa9tabNM8BQZmaEOzJSjIpXhClaK-Z6jqHZGEuEzSlNJQyq9zMlYxJlkImAipMp_DZ2iLNQbIKhIuOJJihPvU8kiGSWukjJyE1d4LJMWfGwmPE4MOLmukZHHlZMSBLFmT2zYY8H7lnpeg3L8g-7E8O4_ZIcNY2Ozghfxg7xZ8K5txrWnD1REocpVRYP6Dn087GK_loP2R35YgSk6FrANCWkJNK73ZktxM63wvSNfgzhyCz60svTo-A8eH_9beKqp67jRIXSWdyt1hJbUUh7DNpswfPL-l2OzVPCtN_bwOR5M8NvVcNT98QsTmR6l |
| linkProvider | ProQuest |
| linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV1bb9MwFD4am6bxgrgT2MBIGy8oWi5O7DxMqFs3tWxUExRpb5GdOOukNClrq6rit_HfOE6cbBUwnvacU9fyOT7-Pl--A7DrCEUDlmH28wJuU1eENqepa7OQRjJEfJ3I6pbvIOx9p58vgos1-NW8hdHXKpucWCXqtEz0Hvm-xxyK2Nbl0afJD1tXjdKnq00JDWFKK6QHlcSYedhxqpYLpHDTg34X_b3neSfHw6OebaoM2AlSk5nNMsFT7G2GEz1TjopUhmGqFPM9R1GNuBPhM0pTSUMqvczJGPJ0yUTAREiVj80-gA3q0wi538bh8eD8a7sUeBGvCyKGyNlxTJqb90GgNx28fU45Aip3ZU3cHGkyvrj6G-T98-bm1ryYiOVC5PmtZfHkMTwyeJZ06gB8AmuqeAqbdYXL5TP42f3WIf0xJi3SyJ-QMiNGjTQnGoHOkfETUaTE7FwQ_SaqslLX-lgbW9eqm8vpmJzXKrBTcoiLb0rKgiB-JV2lJsQIxV6STn6JfpuNxs9heB-eeAHrRVmoV0Awb3HFkxQH3qeSRTJKXCVl5Cau8FgmLfjYDHicGC10XZIjjytOFASxdk9s3GPBXms9qTVA_mG3a3z3H7PtxrGxSRjT-Ca8LXjffsaprs9vRKHKeWWD6RUpJTbxso6D9o_8sNJudCxgKxHSGmgZ8dUvxdWokhOPfK0ZyS340MbSnf1_fXf_38FWb_jlLD7rD07fwEP9y3rLahvWZ9dztYMgbibfmqlCIL7nyfkb9-JW2g |
| linkToUnpaywall | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwpV1Lb9QwEB7BVhW98C4NFGSkwgVlm4cTO8eFUhUOVSVaqZwiO7G7K7LJapOoWvjzjBNn1eUtcYw8smN7PP4-Pz4DHHhC0YhpjH5BxF3qi9jlNPddFtNExoivM9md8j2NTy7ox8vo8sYt_txIxFcir8dTw0mvZ120tu1aH9ZZ_5KP4ezBIacc8QjGmlzfhq04QjQ-gq2L07PJ517SG5ky7cQ-DUxxjbL7cPY9ijay2JiVtm3RvwKdP5-dvNOWC7G6FkVxY2I6vgdiqFJ_HuXLuG3kOPv6g9rj_9T5Pty1qJVMejd7ALdU-RC2-3csV4_g29GnCfkwx9BEBpETUmliNUcLYnBmi7yeiDIndn2CmJtPnZVams1rzN1oa67qOTnrtV5r8han2JxUJUGUSo6UWhArB3tFJsVVtZw10_ljOD9-f_7uxLWvOrgZUsHGZVrwHL1DY2DVylOJ0hgWlGJh4ClqGE4mQkZpLmlMZaA9zRLOJBMREzFV4S6MyqpUe0AwOnHFsxw7OqSSJTLJfCVl4me-CJiWDrwZOjXNrOK5eXijSDvmE0WpadHUtqgDr9bWi17p4zd2B7ab_mK2PzhPOnRlGjCPIkHzeeLAy3UyDmizSyNKVbWdDQZRJI6YxZPe19YFhXGn0Og5wDa8cG1gxMI3U8rZtBMNT0KjDMkdeL321z_-_9N_NXwGO-azX5bah1GzbNVzBGqNfGHH4netdTii |
| openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=DSA+Image+Analysis+of+Clinical+Features+and+Nursing+Care+of+Cerebral+Aneurysm+Patients+Based+on+the+Deep+Learning+Algorithm&rft.jtitle=Scanning&rft.au=Wang%2C+Jian&rft.au=Ti%2C+Lin&rft.au=Sun%2C+Xiaorui&rft.au=Yang%2C+Ruping&rft.date=2022&rft.issn=0161-0457&rft.eissn=1932-8745&rft.volume=2022&rft.spage=1&rft.epage=6&rft_id=info:doi/10.1155%2F2022%2F8485651&rft.externalDBID=n%2Fa&rft.externalDocID=10_1155_2022_8485651 |
| thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=0161-0457&client=summon |
| thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=0161-0457&client=summon |
| thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=0161-0457&client=summon |